Advancement of Data Processing Methods for Artificial and Computing Intelligence

Advancement of Data Processing Methods for Artificial and Computing Intelligence

River Publishers Series in Computing and Information Science and Technology

Advancement of Data Processing Methods for Artificial and Computing Intelligence

Editors:
Seema Rawat, Amity University in Tashkent, Uzbekistan
V. Ajantha Devi, AP3 Solutions, Chennai, India.
Praveen Kumar,Amity University in Tashkent, Uzbekistan

ISBN: 9788770040174 e-ISBN: 9788770040167

Available: April 2024


This book emphasizes the applications of advances in data processing methods for Artificial Intelligence in today's fast-changing world, as well as to serve society through research, innovation, and development in this field. This book is applicable to a wide range of data that contribute to data science concerns and can be used to promote research in this high-potential new field. People's perceptions of the world and how they conduct their lives have changed dramatically as a result of technological advancements. The world has been gripped by technology, and the advances that are being made every day are undeniably transforming the planet. In the domains of Big Data, engineering, and data science, this cutting-edge technology is ready to support us.
Artificial intelligence (AI) is a current research topic because it can be applied to a wide range of applications and disciplines to solve complicated problems and find optimal solutions. In research, medicine, technology, and the social sciences, the benefits of AI have already been proven. Data science, also known as pattern analytics and mining, is a technique for extracting useful and relevant information from databases, enabling better decision-making and strategy formulation in a range of fields. As a result of the exponential growth of data in recent years, the combined notions of big data and AI have given rise to many study areas, such as scale-up behaviour from classical algorithms. Furthermore, combining numerous AI technologies from other areas (such as vision, security, control, and biology) in order to build efficient and durable systems that interact in the real world is a new problem. Despite recent improvements in fundamental AI technologies, the integration of these skills into larger, trustworthy, transparent, and maintainable systems is still in its development. Both conceptually and practically, there are a number of unanswered issues.
Data Science, Deep Learning, Data Processing, Artificial Intelligence for Data Analytics, Sentiment Analysis, Artificial Neural Networks, Big Data Analytics, Data Engineering, Machine Learning, Deep Learning and its Applications, Predictive Analysis, Data-Driven Analytics, and Business Management are some of the topics covered in this book.